Different from general photo retouching tasks, portrait photo retouching (PPR), which aims to enhance the visual quality of a collection of flat-looking portrait photos, has its special and practical requirements such as human-region priority (HRP) and group-level consistency (GLC). HRP requires that more attention should be paid to human regions, while GLC requires that a group of portrait photos should be retouched to a consistent tone. Models trained on existing general photo retouching datasets, however, can hardly meet these requirements of PPR. To facilitate the research on this high-frequency task, we construct a large-scale PPR dataset, namely PPR10K, which is the first of its kind to our best knowledge. PPR10K contains $1, 681$ groups and $11, 161$ high-quality raw portrait photos in total. High-resolution segmentation masks of human regions are provided. Each raw photo is retouched by three experts, while they elaborately adjust each group of photos to have consistent tones. We define a set of objective measures to evaluate the performance of PPR and propose strategies to learn PPR models with good HRP and GLC performance. The constructed PPR10K dataset provides a good benchmark for studying automatic PPR methods, and experiments demonstrate that the proposed learning strategies are effective to improve the retouching performance. Datasets and codes are available: https://github.com/csjliang/PPR10K.
翻译:与一般照片修改任务不同,照片修改任务(PPR)旨在提高平面照片收集的视觉质量,其特殊和实用要求,如人类区域优先事项(HRP)和群体一致性(GLC)。HRP要求更多关注人类区域,而GLC则要求将一组肖像照片改成一致的语气。关于现有一般照片修改数据集的培训模型很难满足PPR的这些要求。为了便利这一高频任务的研究,我们建立了一个大型PPR数据集,即PPR10K,这是我们最了解的一类数据。PPR10K包含1,681美元组和11,161美元高品质的原始肖像照片。提供了人类区域高分辨率分层遮罩。每张原始照片都由三名专家重新整理,同时详细调整每组照片,使之与目标一致。我们界定了一套客观措施,以评价PPRP/PROP的绩效评估业绩,并提议了一系列战略,以学习PPRK的良好数据模型。